diff options
author | Patrick Simianer <p@simianer.de> | 2013-11-12 20:39:59 +0100 |
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committer | Patrick Simianer <p@simianer.de> | 2013-11-12 20:39:59 +0100 |
commit | 864a25ebf0c6b9ff0e127f310930834326afbfa0 (patch) | |
tree | 5f3db65741991e627dea9ba26c869a9969103fec /training/dtrain/examples/standard | |
parent | 68b0969b1f41eacb4b336a66625894995b2f1e74 (diff) |
fix
Diffstat (limited to 'training/dtrain/examples/standard')
-rw-r--r-- | training/dtrain/examples/standard/dtrain.ini | 2 | ||||
-rw-r--r-- | training/dtrain/examples/standard/expected-output | 112 |
2 files changed, 59 insertions, 55 deletions
diff --git a/training/dtrain/examples/standard/dtrain.ini b/training/dtrain/examples/standard/dtrain.ini index ef022469..fc83f08e 100644 --- a/training/dtrain/examples/standard/dtrain.ini +++ b/training/dtrain/examples/standard/dtrain.ini @@ -15,7 +15,7 @@ epochs=3 # run over input 3 times k=100 # use 100best lists N=4 # optimize (approx) BLEU4 scorer=fixed_stupid_bleu # use 'stupid' BLEU+1 -learning_rate=0.0001 # learning rate, don't care if gamma=0 (perceptron) and loss_margin=0 (not margin perceptron) +learning_rate=0.1 # learning rate, don't care if gamma=0 (perceptron) and loss_margin=0 (not margin perceptron) gamma=0 # use SVM reg sample_from=kbest # use kbest lists (as opposed to forest) filter=uniq # only unique entries in kbest (surface form) diff --git a/training/dtrain/examples/standard/expected-output b/training/dtrain/examples/standard/expected-output index a35bbe6f..75f47337 100644 --- a/training/dtrain/examples/standard/expected-output +++ b/training/dtrain/examples/standard/expected-output @@ -4,17 +4,18 @@ Reading ./nc-wmt11.en.srilm.gz ----5---10---15---20---25---30---35---40---45---50---55---60---65---70---75---80---85---90---95--100 **************************************************************************************************** Example feature: Shape_S00000_T00000 -Seeding random number sequence to 4049211323 +Seeding random number sequence to 3751911392 dtrain Parameters: k 100 N 4 T 3 + batch 0 scorer 'fixed_stupid_bleu' sample from 'kbest' filter 'uniq' - learning rate 1 + learning rate 0.1 gamma 0 loss margin 0 faster perceptron 1 @@ -25,9 +26,9 @@ Parameters: l1 reg 0 'none' pclr no max pairs 4294967295 + repeat 1 cdec cfg './cdec.ini' - input './nc-wmt11.de.gz' - refs './nc-wmt11.en.gz' + input './nc-wmt11.gz' output '-' stop_after 10 (a dot represents 10 inputs) @@ -35,25 +36,26 @@ Iteration #1 of 3. . 10 Stopping after 10 input sentences. WEIGHTS - Glue = -1100 - WordPenalty = -82.082 - LanguageModel = -3199.1 - LanguageModel_OOV = -192 - PhraseModel_0 = +3128.2 - PhraseModel_1 = -1610.2 - PhraseModel_2 = -4336.5 - PhraseModel_3 = +2910.3 - PhraseModel_4 = +2523.2 - PhraseModel_5 = +506 - PhraseModel_6 = +1467 - PassThrough = -387 + Glue = -110 + WordPenalty = -8.2082 + LanguageModel = -319.91 + LanguageModel_OOV = -19.2 + PhraseModel_0 = +312.82 + PhraseModel_1 = -161.02 + PhraseModel_2 = -433.65 + PhraseModel_3 = +291.03 + PhraseModel_4 = +252.32 + PhraseModel_5 = +50.6 + PhraseModel_6 = +146.7 + PassThrough = -38.7 --- 1best avg score: 0.16966 (+0.16966) - 1best avg model score: 2.9874e+05 (+2.9874e+05) - avg # pairs: 906.3 (meaningless) - avg # rank err: 906.3 + 1best avg model score: 29874 (+29874) + avg # pairs: 906.3 + avg # rank err: 0 (meaningless) avg # margin viol: 0 - non0 feature count: 825 + k-best loss imp: 100% + non0 feature count: 832 avg list sz: 91.3 avg f count: 139.77 (time 0.35 min, 2.1 s/S) @@ -61,25 +63,26 @@ WEIGHTS Iteration #2 of 3. . 10 WEIGHTS - Glue = -1221 - WordPenalty = +836.89 - LanguageModel = +2332.3 - LanguageModel_OOV = -1451 - PhraseModel_0 = +1507.2 - PhraseModel_1 = -2728.4 - PhraseModel_2 = -4183.6 - PhraseModel_3 = +1816.3 - PhraseModel_4 = -2894.7 - PhraseModel_5 = +1403 - PhraseModel_6 = +35 - PassThrough = -1097 + Glue = -122.1 + WordPenalty = +83.689 + LanguageModel = +233.23 + LanguageModel_OOV = -145.1 + PhraseModel_0 = +150.72 + PhraseModel_1 = -272.84 + PhraseModel_2 = -418.36 + PhraseModel_3 = +181.63 + PhraseModel_4 = -289.47 + PhraseModel_5 = +140.3 + PhraseModel_6 = +3.5 + PassThrough = -109.7 --- 1best avg score: 0.17399 (+0.004325) - 1best avg model score: 49369 (-2.4937e+05) - avg # pairs: 662.4 (meaningless) - avg # rank err: 662.4 + 1best avg model score: 4936.9 (-24937) + avg # pairs: 662.4 + avg # rank err: 0 (meaningless) avg # margin viol: 0 - non0 feature count: 1235 + k-best loss imp: 100% + non0 feature count: 1240 avg list sz: 91.3 avg f count: 125.11 (time 0.27 min, 1.6 s/S) @@ -87,32 +90,33 @@ WEIGHTS Iteration #3 of 3. . 10 WEIGHTS - Glue = -1574 - WordPenalty = -17.372 - LanguageModel = +6861.8 - LanguageModel_OOV = -3997 - PhraseModel_0 = -398.76 - PhraseModel_1 = -3419.6 - PhraseModel_2 = -3186.7 - PhraseModel_3 = +1050.8 - PhraseModel_4 = -2902.7 - PhraseModel_5 = -486 - PhraseModel_6 = -436 - PassThrough = -2985 + Glue = -157.4 + WordPenalty = -1.7372 + LanguageModel = +686.18 + LanguageModel_OOV = -399.7 + PhraseModel_0 = -39.876 + PhraseModel_1 = -341.96 + PhraseModel_2 = -318.67 + PhraseModel_3 = +105.08 + PhraseModel_4 = -290.27 + PhraseModel_5 = -48.6 + PhraseModel_6 = -43.6 + PassThrough = -298.5 --- 1best avg score: 0.30742 (+0.13343) - 1best avg model score: -1.5393e+05 (-2.0329e+05) - avg # pairs: 623.8 (meaningless) - avg # rank err: 623.8 + 1best avg model score: -15393 (-20329) + avg # pairs: 623.8 + avg # rank err: 0 (meaningless) avg # margin viol: 0 - non0 feature count: 1770 + k-best loss imp: 100% + non0 feature count: 1776 avg list sz: 91.3 avg f count: 118.58 -(time 0.25 min, 1.5 s/S) +(time 0.28 min, 1.7 s/S) Writing weights file to '-' ... done --- Best iteration: 3 [SCORE 'fixed_stupid_bleu'=0.30742]. -This took 0.86667 min. +This took 0.9 min. |